A DEEP-LEARNING BASED TOOL FOR HISTOPATHOLOGICAL DIAGNOSIS OF MELANOMA USING CONVOLUTIONAL NEURAL NETWORKS
DOI:
https://doi.org/10.16891/2317-434X.v13.e4.a2026.id2848Palavras-chave:
Inteligência Artificial, Patologia, MelanomaResumo
The application of deep learning to medical image analysis to aid diagnosis in healthcare has emerged as a powerful tool for early disease detection, thus improving treatment prospects and patient recovery. The aim of this study was to develop a convolutional neural network (CNN)-based predictive model to support the histopathological diagnosis of melanoma. To develop the proposed model, a dataset consisting of 411 images was used, including 393 of these in the experimental phase. The dataset was divided into 70% of the images for training and 30% for testing, and a model was constructed using ResNet50 architecture. The results showed that ResNet50 rapidly acquired the ability to distinguish features to accurately perform histopathological melanoma diagnoses. The error rate rapidly converged, achieving accuracy of approximately 90%. This proposed model is able to enhance diagnostic accuracy and support clinical practice in melanoma detection.